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Selection of Informative Spectral Bands for PLS Models to Estimate Foliar Chlorophyll Content Using Hyperspectral Reflectance

机译:选择PLS模型的信息光谱带,以使用高光谱反射估计叶酸叶绿素含量

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Partial least-squares (PLS) regression is a popular method for modeling chemical constituents from spectroscopic data and has been widely applied to retrieve leaf chemical components via hyperspectral remote sensing. However, one persistent challenge for applying the PLS regression is the selection of informative spectral bands among the vast array of acquired spectra. No consensus has been reached yet on how to select informative bands regardless of many techniques being proposed. In this paper, we have composited four individual data sets containing a total of 598 leaf samples from various species to evaluate four different band elimination/selection methods. Results revealed that the stepwise-PLS approach was optimal to estimate leaf chlorophyll content even under different spectral resolutions, from which informative bands were identified. Informative bands, in general, include bands inside the near-infrared (NIR), and in addition, one within the blue range and one within the red range. With such combinations, the PLS regression models meet the requirement for accurate leaf chlorophyll estimation. For most PLS regression models, their accuracies decreased with the reduction of spectral resolution, but the stepwise-PLS approach could consistently estimate the chlorophyll content at different spectral resolutions (with R-2 >= 0.77 for resolutions < 20 nm). The findings, hence, provide valuable insights for selecting informative spectral bands for PLS analysis and lay a strong foundation for retrieving foliar biochemical content using hyperspectral remote sensing data.
机译:局部最小二乘(PLS)回归是一种用于从光谱数据建模化学成分的普遍方法,并且已被广泛应用于通过高光谱遥感检索叶子化学成分。然而,用于应用PLS回归的一个持续挑战是在大量获取的光谱中选择信息频谱频带。尚未达成达成共识,但如何选择信息乐队,无论提出多种技术如何。在本文中,我们已经合成了四种单独的数据集,其中包含来自各种物种的总共598个叶样本来评估四种不同的带消除/选择方法。结果表明,即使在不同的光谱分辨率下,逐步-PLS方法也是最佳的估计叶片叶绿素含量,从而鉴定了信息频带。通常,信息频带包括近红外(NIR)内的频带,另外,蓝色范围内的频带和红色范围内的一个。通过这种组合,PLS回归模型满足准确的叶绿素估计的要求。对于大多数PLS回归模型,随着光谱分辨率的降低,它们的精度降低,但是逐步的方法可以一致地估计不同光谱分辨率的叶绿素含量(用于分辨率<20nm的R-2> = 0.77)。因此,该发现为选择PLS分析的信息频谱带提供了有价值的见解,并利用高光谱遥感数据检索叶面生化含量的强大基础。

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